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Addition of Randomly Permuted Models for Predictive Performance Validation #121
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I just wanted to circle back on the potential implementation of this? |
I have some potential code form R that may be able to help make this a reality? |
Hi @abadgerw, Thanks for suggestion! I need to go through your papers and check it out. Not sure if someone else wishes to contribute this, since my current availability is quite limited. If you have a code example, post it here I am sure it will be of great help for getting insight of it! |
Sorry for the delay. Attached is an example that provides some insight into the randomly permuted models. It also performs OPLS-DA which relates to the other open inquiry. Do you think this will help facilitate implementation? |
Is the example code helpful for potential implementation? |
HI @abadgerw, thanks for sharing the example I am sure it will be helpful as a reference point for any future implementation. |
I wanted to see if there were still plans to add this? |
Not discarded, still in todo list |
Would it be possible to include automatic generation of a randomly permuted dataset (generated by randomly permuting the class identities) to have these models run in parallel to further validate predictive performance as is done in the following paper (https://academic.oup.com/braincomms/article/3/2/fcab084/6237484?login=true)? Another paper (https://pubmed.ncbi.nlm.nih.gov/25596422/) demonstrates that when sample sizes are small (which is common in biological contexts), prediction accuracy by chance alone can approach 70% or higher.
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